Agricultural Water Management Model Based on Grey Water Footprints under Uncertainty and its Application
The grey water footprint theory was introduced into a fractional programming model to alleviate non-point source pollution and increase water-use efficiency through the adjustment of crop planting structure. The interval programming method was also incorporated within the developed framework to hand...
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doaj-c1240913380c4dbeba7c424457ee94332020-11-25T02:36:22ZengMDPI AGSustainability2071-10502019-10-011120556710.3390/su11205567su11205567Agricultural Water Management Model Based on Grey Water Footprints under Uncertainty and its ApplicationGe Song0Chao Dai1Qian Tan2Shan Zhang3College of Water Resources & Civil Engineering, China Agricultural University, Beijing 100083, ChinaSchool of Civil and Environmental Engineering, Nanyang Technological University, Singapore 639798, SingaporeCollege of Water Resources & Civil Engineering, China Agricultural University, Beijing 100083, ChinaCollege of Water Resources & Civil Engineering, China Agricultural University, Beijing 100083, ChinaThe grey water footprint theory was introduced into a fractional programming model to alleviate non-point source pollution and increase water-use efficiency through the adjustment of crop planting structure. The interval programming method was also incorporated within the developed framework to handle parametric uncertainties. The objective function of the model was the ratio of economic benefits to grey water footprints from crop production, and the constraints contained water availability constraints, food security constraints, planting area constraints, grey water footprint constraints and non-negative constraints. The model was applied to the Hetao Irrigation District of China. It was found that, based on the data in the year of 2016, the optimal planting plans generated from the developed model would reduce 34,400 m<sup>3</sup> of grey water footprints for every 100 million Yuan gained from crops. Under the optimal planting structure, the total grey water footprints would be reduced by 21.9 million m<sup>3</sup>, the total economic benefits from crops would be increased by 1.138 billion Yuan, and the irrigation water would be saved by 44 million m<sup>3</sup>. The optimal results could provide decision-makers with agricultural water use plans with reduced negative impacts on the environment and enhanced economic benefits from crops.https://www.mdpi.com/2071-1050/11/20/5567grey water footprintfractional programming modelinterval parametercrop planting structure |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ge Song Chao Dai Qian Tan Shan Zhang |
spellingShingle |
Ge Song Chao Dai Qian Tan Shan Zhang Agricultural Water Management Model Based on Grey Water Footprints under Uncertainty and its Application Sustainability grey water footprint fractional programming model interval parameter crop planting structure |
author_facet |
Ge Song Chao Dai Qian Tan Shan Zhang |
author_sort |
Ge Song |
title |
Agricultural Water Management Model Based on Grey Water Footprints under Uncertainty and its Application |
title_short |
Agricultural Water Management Model Based on Grey Water Footprints under Uncertainty and its Application |
title_full |
Agricultural Water Management Model Based on Grey Water Footprints under Uncertainty and its Application |
title_fullStr |
Agricultural Water Management Model Based on Grey Water Footprints under Uncertainty and its Application |
title_full_unstemmed |
Agricultural Water Management Model Based on Grey Water Footprints under Uncertainty and its Application |
title_sort |
agricultural water management model based on grey water footprints under uncertainty and its application |
publisher |
MDPI AG |
series |
Sustainability |
issn |
2071-1050 |
publishDate |
2019-10-01 |
description |
The grey water footprint theory was introduced into a fractional programming model to alleviate non-point source pollution and increase water-use efficiency through the adjustment of crop planting structure. The interval programming method was also incorporated within the developed framework to handle parametric uncertainties. The objective function of the model was the ratio of economic benefits to grey water footprints from crop production, and the constraints contained water availability constraints, food security constraints, planting area constraints, grey water footprint constraints and non-negative constraints. The model was applied to the Hetao Irrigation District of China. It was found that, based on the data in the year of 2016, the optimal planting plans generated from the developed model would reduce 34,400 m<sup>3</sup> of grey water footprints for every 100 million Yuan gained from crops. Under the optimal planting structure, the total grey water footprints would be reduced by 21.9 million m<sup>3</sup>, the total economic benefits from crops would be increased by 1.138 billion Yuan, and the irrigation water would be saved by 44 million m<sup>3</sup>. The optimal results could provide decision-makers with agricultural water use plans with reduced negative impacts on the environment and enhanced economic benefits from crops. |
topic |
grey water footprint fractional programming model interval parameter crop planting structure |
url |
https://www.mdpi.com/2071-1050/11/20/5567 |
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